Published November 10, 2022 | Version v1
Dataset Open

Data from: Adaptive multi-objective control explains how humans make lateral maneuvers while walking

  • 1. Pennsylvania State University

Description

To successfully traverse their environment, humans often perform maneuvers to achieve desired task goals while simultaneously maintaining balance. Humans accomplish these tasks primarily by modulating their foot placements. As humans are more unstable laterally, we must better understand how humans modulate lateral foot placement. We previously developed a theoretical framework and corresponding computational models to describe how humans regulate lateral stepping during straight-ahead continuous walking. We identified goal functions for step width and lateral body position that define the walking task and determine the set of all possible task solutions as Goal Equivalent Manifolds (GEMs). Here, we used this framework to determine if humans can regulate lateral stepping during non-steady-state lateral maneuvers by minimizing errors consistent with these goal functions. Twenty young healthy adults each performed four lateral lane-change maneuvers in a virtual reality environment. Extending our general lateral stepping regulation framework, we first re-examined the requirements of such transient walking tasks.  Doing so yielded new theoretical predictions regarding how steps during any such maneuver should be regulated to minimize error costs, consistent with the goals required at each step and with how these costs are adapted at each step during the maneuver.  Humans performed the experimental lateral maneuvers in a manner consistent with our theoretical predictions. Furthermore, their stepping behavior was well modeled by allowing the parameters of our previous lateral stepping models to adapt from step to step. To our knowledge, our results are the first to demonstrate humans might use evolving cost landscapes in real time to perform such an adaptive motor task and, furthermore, that such adaptation can occur quickly – over only one step.  Thus, the predictive capabilities of our general stepping regulation framework extend to a much greater range of walking tasks beyond just normal, straight-ahead walking.

Notes

All data and codes provided are written in Matlab (https://www.mathworks.com/)

Data files are in Matlab *.mat format

There are multiple open-source alternatives to Matlab. Two common alternatives include GNU Octave (https://octave.org/) and SciLab (https://www.scilab.org/), but numerous others exist as well.

Funding provided by: National Institutes of Health
Crossref Funder Registry ID: http://dx.doi.org/10.13039/100000002
Award Number: R01-AG049735

Funding provided by: National Institutes of Health
Crossref Funder Registry ID: http://dx.doi.org/10.13039/100000002
Award Number: R21-AG053470

Files

README.txt

Files (657.9 kB)

Name Size Download all
md5:24a54b5fde86aa2fd823bee4aa15441d
65.7 kB Download
md5:e315eb0c69864fbd7a0a80c082c837d2
73.1 kB Download
md5:30baa493749680bc1dee47b0059b3764
67.5 kB Download
md5:86dfeb49abc06fab5461b27d5ab77055
75.6 kB Download
md5:a201b41138b5dab4c9bc388ed05a40ad
67.6 kB Download
md5:a297fed5d347d03653b793bffb84424d
75.7 kB Download
md5:6424a34a6a7e425febb22442b550a3b7
99.9 kB Download
md5:50ac003d914f87d7f19c1a75ee7cb812
110.7 kB Download
md5:9708a6d820816039050aad231f4cd53c
604 Bytes Download
md5:69132aa8f0724eedae210b1240b6ee91
21.4 kB Preview Download

Additional details

Related works

Is cited by
10.1101/2022.03.21.485079 (DOI)
Is derived from
10.5281/zenodo.7045551 (DOI)